A reconfigurable dynamic Bayesian network for digital twin modeling of structures with multiple damage modes

Theoretical and Applied Mechanics Letters - Tập 13 - Trang 100440 - 2023
Yumei Ye1,2, Qiang Yang2, Jingang Zhang2,3, Songhe Meng2, Jun Wang1, Xia Tang1
1School of Mechanical Technology, Wuxi Institute of Technology, Wuxi 214121, China
2National Key Laboratory of Science and Technology for National Defence on Advanced Composites in Special Environments, Harbin Institute of Technology, Harbin 150001, China
3Beijing Institute of Astronautical Systems Engineering, Beijing 100076, China

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